© 2016 Elsevier Ltd Collaborative recommender systems offer a solution to the information overload problem found in online environments such as e-commerce. The use of collaborative filtering, the most widely used recommendation method, gives rise to potential privacy issues. In addition, the user ratings utilized in collaborative filtering systems to recommend products or services must be protected. The purpose of this research is to provide a solution to the privacy concerns of collaborative filtering users, while maintaining high accuracy of recommendations. This paper proposes a multi-level privacy-preserving method for collaborative filtering systems by perturbing each rating before it is submitted to the server. The perturbation method...
AbstractRandomization-based privacy protection methods are widely used in collaborative filtering sy...
Available online 9 March 2018Collaborative Filtering (CF) is applied in recommender systems to predi...
Recommender systems are applications that are used in e-commerce platforms to personalize the conten...
© 2016 Elsevier Ltd Collaborative recommender systems offer a solution to the information overload p...
Collaborative Filtering (CF) techniques are becoming increasingly popular with the evolution of the ...
With the continuous growth of the Internet and the progress of electronic commerce the issues of pro...
With the continuous growth of the Internet and the progress of electronic commerce the issues of pro...
With the evolution of the Internet, collaborative filtering (CF) techniques are becoming increasingl...
Privacy-preserving collaborative filtering is an emerging web-adaptation tool to cope with informati...
This dissertation studies data privacy preservation in collaborative filtering based recommender sys...
Abstract—Collaborative filtering is a widely-used technique in online services to enhance the accura...
Recommendation systems are information-filtering systems that help users deal with information overl...
In recommender systems, usually, a central server needs to have access to users' profiles in order t...
State-of-the-art recommender systems produce high-quality recommendations to support users in findin...
By offering personalized content to users, recommender systems have become a vital tool in e-commerc...
AbstractRandomization-based privacy protection methods are widely used in collaborative filtering sy...
Available online 9 March 2018Collaborative Filtering (CF) is applied in recommender systems to predi...
Recommender systems are applications that are used in e-commerce platforms to personalize the conten...
© 2016 Elsevier Ltd Collaborative recommender systems offer a solution to the information overload p...
Collaborative Filtering (CF) techniques are becoming increasingly popular with the evolution of the ...
With the continuous growth of the Internet and the progress of electronic commerce the issues of pro...
With the continuous growth of the Internet and the progress of electronic commerce the issues of pro...
With the evolution of the Internet, collaborative filtering (CF) techniques are becoming increasingl...
Privacy-preserving collaborative filtering is an emerging web-adaptation tool to cope with informati...
This dissertation studies data privacy preservation in collaborative filtering based recommender sys...
Abstract—Collaborative filtering is a widely-used technique in online services to enhance the accura...
Recommendation systems are information-filtering systems that help users deal with information overl...
In recommender systems, usually, a central server needs to have access to users' profiles in order t...
State-of-the-art recommender systems produce high-quality recommendations to support users in findin...
By offering personalized content to users, recommender systems have become a vital tool in e-commerc...
AbstractRandomization-based privacy protection methods are widely used in collaborative filtering sy...
Available online 9 March 2018Collaborative Filtering (CF) is applied in recommender systems to predi...
Recommender systems are applications that are used in e-commerce platforms to personalize the conten...